Sync customer data from your warehouse into the tools your business teams rely on.
Head of Machine Learning
Location
United States
Posted
139 days ago
Salary
$230K - $350K / year
Seniority
Lead
Job Description
Head of Machine Learning
Hightouch
• lead machine learning efforts across Hightouch • oversee product development and team execution • enhance team reliability and incident management • foster team growth and engagement
Job Requirements
- experience in engineering leadership
- ability to drive product development and execution
- strong people management skills
- familiarity with machine learning and data infrastructure
Benefits
- meaningful equity compensation in the form of ISO options
- early exercise and a 10 year post-termination exercise window
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